Singular value decomposition based matrix surgery
Jehan Ghafuri, Sabah Jassim

TL;DR
This paper introduces SVD-Surgery, a simple method to improve matrix conditioning by modifying singular values, which stabilizes the topological features of point clouds and enhances deep learning robustness.
Contribution
The paper presents a novel SVD-based matrix surgery technique that effectively reduces condition numbers and stabilizes persistent homology in datasets, with applications to deep learning regularization.
Findings
SVD-Surgery improves matrix conditioning and stability.
It preserves filter norms while reducing inverse norms.
The method enhances deep learning robustness against noise.
Abstract
This paper aims to develop a simple procedure to reduce and control the condition number of random matrices, and investigate the effect on the persistent homology (PH) of point clouds of well- and ill-conditioned matrices. For a square matrix generated randomly using Gaussian/Uniform distribution, the SVD-Surgery procedure works by: (1) computing its singular value decomposition (SVD), (2) replacing the diagonal factor by changing a list of the smaller singular values by a convex linear combination of the entries in the list, and (3) compute the new matrix by reversing the SVD. Applying SVD-Surgery on a matrix often results in having different diagonal factor to those of the input matrix. The spatial distribution of random square matrices are known to be correlated to the distribution of their condition numbers. The persistent homology (PH) investigations, therefore, are focused on…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Advanced Neuroimaging Techniques and Applications · Cell Image Analysis Techniques
MethodsConvolution
